Real-time raw signal genomic analysis using fully integrated memristor hardware

信号(编程语言) 计算机科学 记忆电阻器 计算机硬件 嵌入式系统 计算机体系结构 电子工程 工程类 程序设计语言
作者
Can Li,Peiyi He,Shengbo Wang,Ruibin Mao,Sebastian Siegel,Giacomo Pedretti,Jim Ignowski,John Paul Strachan,Ruibang Luo
出处
期刊:Research Square - Research Square
标识
DOI:10.21203/rs.3.rs-6364827/v1
摘要

Abstract Advances in third-generation sequencing have enabled portable and real-time genomic sequencing, but real-time data processing remains a bottleneck, hampering on-site genomic analysis due to prohibitive time and energy costs. These technologies generate a massive amount of noisy analog signals that traditionally require basecalling and digital mapping, both demanding frequent and costly data movement on von Neumann hardware. To overcome these challenges, we present a memristor-based hardware-software co-design that processes raw sequencer signals directly in analog memory, effectively combining the separated basecalling and read mapping steps. Here we demonstrate, for the first time, end-to-end memristor-based genomic analysis in a fully integrated memristor chip. By exploiting intrinsic device noise for locality-sensitive hashing and implementing parallel approximate searches in content-addressable memory, we experimentally showcase on-site applications including infectious disease detection and metagenomic classification. Our experimentally-validated analysis confirms the effectiveness of this approach on real-world tasks, achieving a state-of-the-art 97.15% F1 score in virus raw signal mapping, with 51× speed up and 477× energy saving compared to implementation on a state-of-the-art ASIC. These results demonstrate that memristor-based in-memory computing provides a viable solution for integration with portable sequencers, enabling truly real-time on-site genomic analysis for applications ranging from pathogen surveillance to microbial community profiling.
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